# Copyright (c) 2025 PaddlePaddle Authors. All Rights Reserved.
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
#     http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.

source $(cd "$(dirname "${BASH_SOURCE[0]}")" && pwd)/utils.sh
init


function hybrid_paddlex() {
    # PaddleX test
    export DEVICE=($(echo $HIP_VISIBLE_DEVICES | tr "," "\n"))
    export DCU_DEVICES=`echo $HIP_VISIBLE_DEVICES`
    unset HIP_VISIBLE_DEVICES
    git clone --depth=1000 https://gitee.com/paddlepaddle/PaddleX.git
    cd PaddleX
    pip install -e .[base]
    paddlex --install PaddleClas
    paddlex --install PaddleSeg
    wget -q https://paddle-model-ecology.bj.bcebos.com/paddlex/data/cls_flowers_examples.tar -P ./dataset
    tar -xf ./dataset/cls_flowers_examples.tar -C ./dataset/
    wget https://paddle-model-ecology.bj.bcebos.com/paddlex/data/seg_optic_examples.tar -P ./dataset
    tar -xf ./dataset/seg_optic_examples.tar -C ./dataset/

    # train Reset50
    echo "Start Reset50"
    python main.py -c paddlex/configs/modules/image_classification/ResNet50.yaml \
    -o Global.mode=train \
    -o Global.dataset_dir=./dataset/cls_flowers_examples \
    -o Global.output=resnet50_output \
    -o Global.device="dcu:${DCU_DEVICES}" \
    -o Train.epochs_iters=2

    # inference Reset50
    python main.py -c paddlex/configs/modules/image_classification/ResNet50.yaml \
    -o Global.mode=predict \
    -o Predict.model_dir="./resnet50_output/best_model/inference" \
    -o Global.device="dcu:${DEVICE[0]}"

    # inference Reset50 with cinn
    python main.py -c paddlex/configs/modules/image_classification/ResNet50.yaml \
    -o Global.mode=predict \
    -o Predict.model_dir="./resnet50_output/best_model/inference" \
    -o Global.device="dcu:${DEVICE[0]}" \
    -o Predict.kernel_option.enable_cinn=True
    echo "End Reset50"

    echo "Start DeepLabv3+"
    # train DeepLabv3+
    python main.py -c paddlex/configs/modules/semantic_segmentation/Deeplabv3_Plus-R50.yaml \
    -o Global.mode=train \
    -o Global.dataset_dir=./dataset/seg_optic_examples \
    -o Global.output=deeplabv3p_output \
    -o Global.device="dcu:${DCU_DEVICES}" \
    -o Train.epochs_iters=2

    # inference DeepLabv3+
    python main.py -c paddlex/configs/modules/semantic_segmentation/Deeplabv3_Plus-R50.yaml \
    -o Global.mode=predict \
    -o Predict.model_dir="./deeplabv3p_output/best_model/inference" \
    -o Global.device="dcu:${DEVICE[0]}"
    echo "End DeepLabv3+"
}


function main(){
    cd ${PADDLE_ROOT}/build
    pip install hypothesis
    /opt/py310/bin/pip install -r ${PADDLE_ROOT}/python/unittest_py/requirements.txt
    /opt/py310/bin/pip install safetensors
    if ls ${PADDLE_ROOT}/build/python/dist/*whl >/dev/null 2>&1; then
        pip install ${PADDLE_ROOT}/build/python/dist/*whl
    fi
    if ls ${PADDLE_ROOT}/dist/*whl >/dev/null 2>&1; then
        pip install ${PADDLE_ROOT}/dist/*whl
    fi
    cp ${PADDLE_ROOT}/build/test/legacy_test/testsuite.py ${PADDLE_ROOT}/build/python
    cp -r ${PADDLE_ROOT}/build/test/white_list ${PADDLE_ROOT}/build/python
    run_hybrid_ci=${1:-"false"}
    ut_total_startTime_s=`date +%s`

    parallel_test_base_gpu_test

    ut_total_endTime_s=`date +%s`
    echo "TestCases Total Time: $[ $ut_total_endTime_s - $ut_total_startTime_s ]s"
    echo "ipipe_log_param_TestCases_Total_Time: $[ $ut_total_endTime_s - $ut_total_startTime_s ]s" >> ${PADDLE_ROOT}/build/build_summary.txt

    if [[ "$IF_DCU" == "ON" ]]; then
      hybrid_paddlex
    fi
}

main
